基于切比雪夫张量的动态灵敏度和初始裕度

Mariano Zeron Medina Laris, I. Ruiz
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引用次数: 0

摘要

本文介绍了如何使用切比雪夫张量在蒙特卡罗模拟中计算金融工具的动态灵敏度。然后利用动态灵敏度计算ISDA (SIMM)定义的动态初始裕量。该技术是通过使用定价函数(如风险引擎中的定价函数)获得的动态灵敏度计算进行基准测试的。我们在外汇掉期和点差期权交易中获得了很高的准确性和计算收益。
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Dynamic Sensitivities and Initial Margin via Chebyshev Tensors
This paper presents how to use Chebyshev Tensors to compute dynamic sensitivities of financial instruments within a Monte Carlo simulation. Dynamic sensitivities are then used to compute Dynamic Initial Margin as defined by ISDA (SIMM). The technique is benchmarked against the computation of dynamic sensitivities obtained by using pricing functions like the ones found in risk engines. We obtain high accuracy and computational gains for FX swaps and Spread Options.
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